Midwest Uncertainty Collective

Paper

Contextifier: Automatic Generation of Annotated Stock Visualizations

Jessica Hullman, Nicholas Diakopoulos, Eytan Adar ACM Human Factors in Computing Systems (CHI) 2013
An annotated visualization produced by Contextifier. Graph labels and arrows point out interface features.

An annotated visualization produced by Contextifier. Graph labels and arrows point out interface features.

Abstract

Online news tools—for aggregation, summarization and automatic generation—are an area of fruitful development as reading news online becomes increasingly commonplace. While textual tools have dominated these developments, annotated information visualizations are a promising way to complement articles based on their ability to add context. But the manual effort required for professional designers to create thoughtful annotations for contextualizing news visualizations is difficult to scale. We describe the design of Contextifier, a novel system that automatically produces custom, annotated visualizations of stock behavior given a news article about a company. Contextifier’s algorithms for choosing annotations is informed by a study of professionally created visualizations and takes into account visual salience, contextual relevance, and a detection of key events in the company’s history. In evaluating our system we find that Contextifier better balances graphical salience and relevance than the baseline.

Citation

BibTeX

@inproceedings{contextifier-2013,
	title        = {Contextifier: Automatic Generation of Annotated Stock Visualizations},
	author       = {Hullman, Jessica and Diakopoulos, Nicholas and Adar, Eytan},
	year         = 2013,
	booktitle    = {Proceedings of the SIGCHI Conference on Human Factors in Computing Systems},
	publisher    = {ACM},
	series       = {CHI '13},
	pages        = {2707–2716},
	doi          = {10.1145/2470654.2481374}
}